Learning entanglement breakdown as a phase transition by confusion
M.A. Gavreev, A.S. Mastiukova, E.O. Kiktenko, A.K. Fedorov

TL;DR
This paper introduces a machine learning approach called 'learning by confusion' to identify entanglement breakdown in quantum states, enabling the creation of entanglement phase diagrams and practical detection in noisy quantum devices.
Contribution
The work develops a novel machine learning method for detecting entanglement breakdown and mapping entanglement phase diagrams in quantum channels, including practical implementation on quantum hardware.
Findings
Successfully determines critical points of entanglement breakdown.
Creates entanglement phase diagrams for quantum channels.
Validates method on IBM quantum processor.
Abstract
Quantum technologies require methods for preparing and manipulating entangled multiparticle states. However, the problem of determining whether a given quantum state is entangled or separable is known to be an NP-hard problem in general, and even the task of detecting entanglement breakdown for a given class of quantum states is difficult. In this work, we develop an approach for revealing entanglement breakdown using a machine learning technique, which is known as 'learning by confusion'. We consider a family of quantum states, which is parameterized such that there is a single critical value dividing states within this family into separate and entangled. We demonstrate the 'learning by confusion' scheme allows us to determine the critical value. Specifically, we study the performance of the method for the two-qubit, two-qutrit, and two-ququart entangled state. In addition, we…
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